Phase I Update – Techniques R esearch
SAN DIEGO, Dec. 01, 2020 (GLOBE NEWSWIRE) — GBT Technologies Inc. (OTC PINK:Â GTCH) (“GBTâ€, or the â€œCompanyâ€), announced as a further update to its press release issued November 12, 2020, that GBT Tokenize (â€œGBT/Tokenizeâ€), its joint venture, started Phase I in the Kirlian Electrophotography imaging technique, potentially aimed for inclusion within its qTerm device. Kirlian photography is a series of techniques that are based on the phenomenon known as electrical coronal discharge. Images that are taken using these techniques present a colorful so-called aura, which can be interpreted in a variety of ways.
The open research is focused on the efforts combining Kirlian imaging with the use of machine learning technology to possibly detect early disease symptoms. GBT/Tokenize is conducting experiments with a few advanced algorithms, one ofÂ them is a private derivativeÂ of the Genetic algorithm.Â The genetic algorithm is a method for solving both constrained and unconstrained optimization problems that are based on natural selection, the process that drives biological evolution. TheÂ algorithm is planned to find pattern similarities in Kirlian images in living tissues in order to categorize potential health related issues. Kirlian imaging produces typical features such as graphical protuberances, halos, and discharge patterns, which can be analyzed by an AI computer program as unique patterns, and categorized as possible criteria for early symptoms identification.Â GBT/Tokenize is conducting experiments with advanced algorithms and methods to analyze energy fields generated by living organs at set periods. These image’s auras will be graphically analyzed toÂ determine patterns that are associated with possible health related symptoms. GBT/Tokenize plans to develop neural network based pattern recognition technology to detect-and-associate unique patterns with related, possible health issues. The research is planned to be conducted over a period of one year and based on its results the company will evaluate the feasibility of implementationÂ of such techniques within its qTerm human vitals product in order to provide further health information for the user’s benefit.
“We are going to look deeper into Kirilian electrophotography science, trying to identify the possibilityÂ of detecting early disease symptoms. Kirlian images ofÂ aÂ living tissue during various intervals may exhibit some similarities. If we could graphically analyze these images using machine learning technology, reaching some consistent conclusions, then we may find a way to find possible early health issue identification” stated Danny Rittman, GBTâ€™s CTO.Â “We intend to analyze and measure KirilianÂ images to find unique patterns that may be associated with early symptoms. We will look for full and partial similarities,Â repetitions, or atypical auras patterns. We will be using AI computing power to detect dynamic images changes as each image will be digitized using high resolution scanning. Here the power of huge data analysis will be extremely beneficial. We plan to implement interactive algorithms to analyze on-the-fly out-of-boundaries patterns to get a comparative representation between the images. The challenging part will be to associate the human body’s various radiations graphical representation, with health related issues. For this purpose, we plan to use our AI, vast data analysis capabilities, trying to assemble a reliable algorithm to create an associative table that will relateÂ patterns to a possible onset disease. Upon reachingÂ conclusions we will evaluate the potential implementationÂ of this technology within our qTerm device to further advice users about their healthâ€ continued Dr. Rittman.
Actual GBT/Tokenizeâ€™s Phase I imaging (for presentation purposes only) are available at:
Certain statements contained in this press release may constitute “forward-looking statements”.Â Forward-looking statements provide current expectations of future events based on certain assumptions and include any statement that does not directly relate to any historical or current fact. Actual results may differ materially from those indicated by such forward-looking statements as a result of various important factors as disclosed in our filings with the Securities and Exchange Commission located at their website ( http://www.sec.gov ).Â In addition to these factors, actual future performance, outcomes, and results may differ materially because of more general factors including (without limitation) general industry and market conditions and growth rates, economic conditions, governmental and public policy changes, the Companyâ€™s ability to raise capital on acceptable terms, if at all, the Companyâ€™s successful development of its products and the integration into its existing products and the commercial acceptance of the Companyâ€™s products.Â The forward-looking statements included in this press release represent the Company’s views as of the date of this press release and these views could change.Â However, while the Company may elect to update these forward-looking statements at some point in the future, the Company specifically disclaims any obligation to do so.Â These forward-looking statements should not be relied upon as representing the Company’s views as of any date subsequent to the date of the press release.
Dr. Danny Rittman, CTO
This article is for the purposes of solicitation subscriptions for this website. This website expects to generate new advertisement revenue resulting from the distribution of this article. The amount of which is unknown at this time. This website or it’s authors do not own any shares of GBT Technologies Inc (GTCH) and does not buy, sell, or trade any shares of (GTCH). This article does not provide a professional analysis of a (GTCH) financial position. (GTCH) financial position and all other information regarding the featured Company should be verified directly with (GTCH). Please read our full disclaimer for more detailed information.